Close Menu

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    What's Hot

    Xiaomi’s Leica Edition flagship confirmed for new global release

    Apple iPad Pro unlikely to get major update for years despite stronger-than-ever competition

    This sleek all-black Citizen Eco-Drive dress watch is 54% off right now

    Facebook X (Twitter) Instagram
    • Artificial Intelligence
    • Business Technology
    • Cryptocurrency
    • Gadgets
    • Gaming
    • Health
    • Software and Apps
    • Technology
    Facebook X (Twitter) Instagram Pinterest Vimeo
    Tech AI Verse
    • Home
    • Artificial Intelligence

      Read the extended transcript: President Donald Trump interviewed by ‘NBC Nightly News’ anchor Tom Llamas

      February 6, 2026

      Stocks and bitcoin sink as investors dump software company shares

      February 4, 2026

      AI, crypto and Trump super PACs stash millions to spend on the midterms

      February 2, 2026

      To avoid accusations of AI cheating, college students are turning to AI

      January 29, 2026

      ChatGPT can embrace authoritarian ideas after just one prompt, researchers say

      January 24, 2026
    • Business

      The HDD brand that brought you the 1.8-inch, 2.5-inch, and 3.5-inch hard drives is now back with a $19 pocket-sized personal cloud for your smartphones

      February 12, 2026

      New VoidLink malware framework targets Linux cloud servers

      January 14, 2026

      Nvidia Rubin’s rack-scale encryption signals a turning point for enterprise AI security

      January 13, 2026

      How KPMG is redefining the future of SAP consulting on a global scale

      January 10, 2026

      Top 10 cloud computing stories of 2025

      December 22, 2025
    • Crypto

      Wall Street Moves Into Prediction Markets With Election-Contract ETF Filings

      February 18, 2026

      Tectonic to Host Inaugural Quantum Summit at ETHDenver 2026 Focused on Post-Quantum Cryptography Readiness for Web3

      February 18, 2026

      Ki Young Ju Says Bitcoin May Need to Hit $55K Before True Recovery Begins

      February 18, 2026

      MYX Finance Is Oversold For The First Time Ever, Yet No Relief In Sight

      February 18, 2026

      Everyone is Talking about the SaaSpocalypse, But Why Does it matter for Crypto?

      February 18, 2026
    • Technology

      Xiaomi’s Leica Edition flagship confirmed for new global release

      February 18, 2026

      Apple iPad Pro unlikely to get major update for years despite stronger-than-ever competition

      February 18, 2026

      This sleek all-black Citizen Eco-Drive dress watch is 54% off right now

      February 18, 2026

      Google’s new smartphone confirmed to launch globally with old Tensor G4 silicon on eve of release

      February 18, 2026

      Nintendo’s VR accessory for the Switch 2 is finally available

      February 18, 2026
    • Others
      • Gadgets
      • Gaming
      • Health
      • Software and Apps
    Check BMI
    Tech AI Verse
    You are at:Home»Technology»Brain-IT: Image Reconstruction from fMRI via Brain-Interaction Transformer
    Technology

    Brain-IT: Image Reconstruction from fMRI via Brain-Interaction Transformer

    TechAiVerseBy TechAiVerseNovember 6, 2025No Comments4 Mins Read2 Views
    Facebook Twitter Pinterest Telegram LinkedIn Tumblr Email Reddit
    Share
    Facebook Twitter LinkedIn Pinterest WhatsApp Email

    Brain-IT: Image Reconstruction from fMRI via Brain-Interaction Transformer

    Roman Beliy* ·
    Amit Zalcher* ·
    Jonathan Kogman ·
    Navve Wasserman ·
    Michal Irani

    * Denotes Equal Contribution

    —

    (a) Image reconstructions
    using the full NSD dataset (40 hours per subject). (b) Efficient Transfer-learning to new subjects with very little
    data: Meaningful reconstructions are obtained with only 15 minutes of fMRI recordings. (Results on Subject 1)

    Abstract

    Reconstructing images seen by people from their fMRI brain recordings provides a non-invasive window into the human brain.
    Despite recent progress enabled by diffusion models, current methods often lack faithfulness to the actual seen images.
    We present Brain-IT, a brain-inspired approach that addresses this challenge through a
    Brain Interaction Transformer (BIT), allowing effective interactions between
    clusters of functionally-similar brain-voxels.
    These functional clusters are shared by all subjects, serving as building blocks for integrating information both within and across brains.
    All model components are shared by all clusters & subjects, allowing efficient training with a limited amount of data.
    To guide the image reconstruction, BIT predicts two complementary localized patch-level image features:
    (i) high-level semantic features, which steer the diffusion model toward the correct semantic content of the image; and
    (ii) low-level structural features, which help to initialize the diffusion process with the correct coarse layout of the image.
    BIT’s design enables direct flow of information from brain-voxel clusters to localized image features.
    Through these principles, our method achieves image reconstructions from fMRI that faithfully reconstruct the seen images,
    and surpass current state-of-the-art approaches both visually and by standard objective metrics.
    Moreover, with only 1 hour of fMRI data from a new subject,
    we achieve results comparable to current methods trained on full 40 hour recordings.

    Brain-IT Overview

    Overview of Brain-IT pipeline showing the Brain Interaction Transformer (BIT) architecture with V2C mapping, semantic and low-level branches.

    The Brain Interaction Transformer (BIT) transforms fMRI signals into Semantic and VGG features using a shared
    Voxel-to-Cluster (V2C) mapping. Two branches are applied:
    (i) the Low-Level branch reconstructs a coarse image from VGG features, used to initialize
    the (ii) Semantic branch, which uses semantic features to guide the diffusion model.
    Each voxel from every subject is mapped to a functional cluster shared across subjects, enabling integration within and across brains.
    Our Brain-IT pipeline thus reconstructs images directly from fMRI activations by first predicting meaningful image features with BIT,
    then refining them through a diffusion model guided by semantic conditioning and a Deep Image Prior (DIP) that ensures structural fidelity.

    Brain-Interaction Transformer (BIT)

    BIT architecture showing the Brain Tokenizer and Cross-Transformer modules for processing fMRI signals into image features.

    The BIT model predicts image features from voxel activations (fMRI). The Brain Tokenizer
    maps the fMRI activations into Brain Tokens, which are representations of the aggregated
    information from all the voxels of a single cluster (one token per cluster). The Cross-Transformer
    Module integrates information from the Brain Tokens to refine their representation, and employs
    query tokens to retrieve information from the Brain Tokens and transform it into image features,
    with each query token predicting a single output image feature.

    Results

    Qualitative Comparisons (40h)

    Qualitative comparisons on Subject 1 with 40-hour training data. Brain-IT is compared to 3 leading methods, yielding reconstructions that better preserve both semantic content and low-level visual properties.

    Qualitative Comparisons – limited amount of subject-specific data (1 hour)

    Reconstructions with 1 hour of subject-specific data. Brain-IT is compared against MindEye2 & MindTuner, demonstrating greater fidelity to the seen images.

    Quantitative Metrics

    Low- and high-level metrics comparing Brain-IT with other reconstruction methods. Results averaged across Subjects 1,2,5,7 from NSD. Brain-IT outperforms all baselines in 7 of 8 metrics.

    Brain-IT demonstrates strong semantic fidelity and structural accuracy across multiple evaluation metrics.
    Importantly, with just 1 hour of data, Brain-IT is comparable to prior methods trained on the full 40 hours.

    BibTeX

    @misc{beliy2025brainitimagereconstructionfmri,
    title={Brain-IT: Image Reconstruction from fMRI via Brain-Interaction Transformer},
    author={Roman Beliy and Amit Zalcher and Jonathan Kogman and Navve Wasserman and Michal Irani},
    year={2025},
    eprint={2510.25976},
    archivePrefix={arXiv},
    primaryClass={cs.CV},
    url={https://arxiv.org/abs/2510.25976}
    }

    © 2026 Brain-IT Authors.
    Share. Facebook Twitter Pinterest LinkedIn Reddit WhatsApp Telegram Email
    Previous ArticleEnd of Japanese community
    Next Article Ratatui – App Showcase
    TechAiVerse
    • Website

    Jonathan is a tech enthusiast and the mind behind Tech AI Verse. With a passion for artificial intelligence, consumer tech, and emerging innovations, he deliver clear, insightful content to keep readers informed. From cutting-edge gadgets to AI advancements and cryptocurrency trends, Jonathan breaks down complex topics to make technology accessible to all.

    Related Posts

    Xiaomi’s Leica Edition flagship confirmed for new global release

    February 18, 2026

    Apple iPad Pro unlikely to get major update for years despite stronger-than-ever competition

    February 18, 2026

    This sleek all-black Citizen Eco-Drive dress watch is 54% off right now

    February 18, 2026
    Leave A Reply Cancel Reply

    Top Posts

    Ping, You’ve Got Whale: AI detection system alerts ships of whales in their path

    April 22, 2025684 Views

    Lumo vs. Duck AI: Which AI is Better for Your Privacy?

    July 31, 2025272 Views

    6.7 Cummins Lifter Failure: What Years Are Affected (And Possible Fixes)

    April 14, 2025156 Views

    6 Best MagSafe Phone Grips (2025), Tested and Reviewed

    April 6, 2025117 Views
    Don't Miss
    Technology February 18, 2026

    Xiaomi’s Leica Edition flagship confirmed for new global release

    Xiaomi’s Leica Edition flagship confirmed for new global release – NotebookCheck.net News ⓘ XiaomiThe Leica…

    Apple iPad Pro unlikely to get major update for years despite stronger-than-ever competition

    This sleek all-black Citizen Eco-Drive dress watch is 54% off right now

    Google’s new smartphone confirmed to launch globally with old Tensor G4 silicon on eve of release

    Stay In Touch
    • Facebook
    • Twitter
    • Pinterest
    • Instagram
    • YouTube
    • Vimeo

    Subscribe to Updates

    Get the latest creative news from SmartMag about art & design.

    About Us
    About Us

    Welcome to Tech AI Verse, your go-to destination for everything technology! We bring you the latest news, trends, and insights from the ever-evolving world of tech. Our coverage spans across global technology industry updates, artificial intelligence advancements, machine learning ethics, and automation innovations. Stay connected with us as we explore the limitless possibilities of technology!

    Facebook X (Twitter) Pinterest YouTube WhatsApp
    Our Picks

    Xiaomi’s Leica Edition flagship confirmed for new global release

    February 18, 20264 Views

    Apple iPad Pro unlikely to get major update for years despite stronger-than-ever competition

    February 18, 20264 Views

    This sleek all-black Citizen Eco-Drive dress watch is 54% off right now

    February 18, 20263 Views
    Most Popular

    7 Best Kids Bikes (2025): Mountain, Balance, Pedal, Coaster

    March 13, 20250 Views

    VTOMAN FlashSpeed 1500: Plenty Of Power For All Your Gear

    March 13, 20250 Views

    This new Roomba finally solves the big problem I have with robot vacuums

    March 13, 20250 Views
    © 2026 TechAiVerse. Designed by Divya Tech.
    • Home
    • About Us
    • Contact Us
    • Privacy Policy
    • Terms & Conditions

    Type above and press Enter to search. Press Esc to cancel.